e-learning

Downstream Single-cell RNA analysis with RaceID

Abstract

About This Material

This is a Hands-on Tutorial from the GTN which is usable either for individual self-study, or as a teaching material in a classroom.

Questions this will address

  • What is normalisation and why is it necessary?
  • How many types of unwanted variation are there?
  • How are biological phenotypes clustered?
  • What is the difference between PCA and tSNE?
  • What is the difference between cell trajectory and cell fate?

Learning Objectives

  • Filtering, normalising, and clustering cells in a matrix
  • Assessing the quality of individual clusters
  • Inferring cell type lineages
  • Examining gene expression
  • Determining the top most expressive genes per cluster
  • Correcting for unwanted variation

Licence: Creative Commons Attribution 4.0 International

Keywords: Single Cell

Target audience: Students

Resource type: e-learning

Version: 5

Status: Active

Prerequisites:

  • Introduction to Galaxy Analyses
  • Single-cell quality control with scater

Learning objectives:

  • Filtering, normalising, and clustering cells in a matrix
  • Assessing the quality of individual clusters
  • Inferring cell type lineages
  • Examining gene expression
  • Determining the top most expressive genes per cluster
  • Correcting for unwanted variation

Date modified: 2023-11-09

Date published: 2019-03-25

Authors: Alex Ostrovsky, Mehmet Tekman

Contributors: Alex Ostrovsky, Mehmet Tekman

Scientific topics: Transcriptomics


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